Download presentation
Presentation is loading. Please wait.
Published byLester Murphy Modified over 9 years ago
1
© Chun-Fa Chang Sampling Theorem & Antialiasing
2
© Chun-Fa Chang Motivations “ My ray traced images have a lot more pixels than the TV screen. Why do they look like @#$%?” How to compute the pixel colors for the following pattern? Antialiasing with Line Samples Antialiasing with Line Samples Rendering Techniques '00 (Proceedings of the 11th Eurographics Workshop on Rendering), pp. 197-205 Thouis R. Jones, Ronald N. Perry Thouis R. JonesRonald N. Perry
3
© Chun-Fa Chang Part I: Sampling Theorem
4
© Chun-Fa Chang Example of Aliasing in Computer Graphics
5
© Chun-Fa Chang Examples of Aliasing in 1D See Figure 14.2 (p.394) of Watt’s book for other examples.
6
© Chun-Fa Chang An Intuition – Using a Single Frequency It’s easy to figure out for a sin wave. What about any signal (usually a mixture of multiple frequencies)? Enter Fourier Transform…
7
© Chun-Fa Chang Sampling 1D Signal: x f(x) becomes i f(i) 2D Image: x, y f(x, y) –For grayscale image, f(x, y) is the intensity of pixel at (x, y).
8
© Chun-Fa Chang Reconstruction If the samples are “dense” enough, then we can recover the original signal. Question is: How dense is enough?
9
© Chun-Fa Chang Fourier Transform Can we separate signal into a set of signals of single frequencies? t
10
© Chun-Fa Chang Basis Functions An example: X=[x 1, x 2, …, x n ] U=[u 1, u 2, …, u n ] V=[v 1, v 2, …, v n ] Let X = a*U + b*V, how to find a and b? If U and V are orthogonal, then a and b are the projection of X onto U and V.
11
© Chun-Fa Chang Compared to Fourier Transform Consider a continuous signal as a infinite- dimensional vector [ f( ), f(2 ), f(3 ),….. ] Consider each frequency a basis, then F( ) is the projection of f(x) onto that basis. t
12
© Chun-Fa Chang Sampling Spatial domain: multiply with a pulse train. Frequency domain: convolution!
13
© Chun-Fa Chang Convolution To start with, image that f(x) is nonzero only in the range of [-a, a]. –Then we only need to consider g(x) in the range of [x-a, x+a] Multiplication in spatial domain results in convolution in frequency domain (and vice versa).
14
© Chun-Fa Chang An Intuition for Convolution Does it make sense to you that multiplication in one domain becomes convolution in the other domain? Look at this example: What are the coefficients of P 1 *P 2 ?
15
© Chun-Fa Chang Consider x n, …, x 2, x 1, x 0 as basis. Projections of P1 and P2 to the basis are (a 1, b 1, c 1, d 1 ) and (a 2, b 2, c 2, d 2 ) P1(x)*P2(x) results in: (a 1, b 1, c 1, d 1 ) (a 2, b 2, c 2, d 2 ) in the transformed space.
16
© Chun-Fa Chang The fact is: you have been doing convolution since elementary school! Example: 222*111 is computed as (2,2,2) (1,1,1)
17
© Chun-Fa Chang Reconstruction Frequency domain: Spatial domain: convolve with Sinc function
18
© Chun-Fa Chang Reconstruction Kernel For perfect reconstruction, we need to convolve with the sinc function. –It’s the Fourier transform of the box function. –It has infinite “support” May be approximated by Gaussian, cubic, or even triangle “tent” function.
19
© Chun-Fa Chang Nyquist Limit Nyquist Limit = 2 * max_frequency Undersampling: sampling below the Nyquist Limit.
20
© Chun-Fa Chang Part II: Antialiasing
21
© Chun-Fa Chang Changes within a Pixel A lot can change within a pixel: –Shading –Edge –Texture Point sampling at the center often produces undesirable result.
22
© Chun-Fa Chang Pixel Coverage What should be the pixel colors for these? Can we simply use the covered areas of blue and white? (Hint: convolve with box filter.) Do we have enough data to compute the coverage?
23
© Chun-Fa Chang Antialiasing Consider a ray tracer. Is it often impossible to find the partial coverage of an edge. Each ray is a point sample. We may use many samples for each pixel slower performance.
24
© Chun-Fa Chang Antialiasing – Uniform Sampling Also called supersampling Wasteful if not much changes within a pixel.
25
© Chun-Fa Chang Filtering How do we reduce NxN supersamples into a pixel? –Average? –More weight near the center? Let’s resort to the sampling theorem.
26
© Chun-Fa Chang Reconstruction Frequency domain: Spatial domain:
27
© Chun-Fa Chang A Few Observations In theory, a sample influences not only its pixel, but also every pixels in the image. What does it mean by removing high frequencies?
28
© Chun-Fa Chang Other Than Uniform Sampling? So far, the extra samples are taken uniformly in screen space. Other ways to take extra samples: –Adaptive sampling –Stochastic (or randomized) sampling
29
© Chun-Fa Chang Antialiasing – Adaptive Sampling Feasible in software, but difficult to implement in hardware. Increase samples only if necessary. But how do we know when is “necessary”? –Check the neighbors.
30
© Chun-Fa Chang Antialiasing – Stochastic Sampling Keep the same number of samples per pixel. Replace the aliasing effects with noise that is easier to ignore.
31
Mipmap – Antialiasing for Texture Mapping When we reduce a 2Nx2N texture into a NxN texture for the next level of mipmapping, we are doing the filtering (usually by bilinear filtering). Trilinear filtering: If the most suitable texture is between NxN and 2Nx2N, then access texels from both levels, and then interpolate. Note that the filtering is isotropic (vs. anisotropic), meaning the filtering is done on a square (or a circle). From: http://commons.wikimedia.org/wiki/File:MipMap_Example_STS101.jpg
32
Anisotropic Mipmap From: http://commons.wikimedia.org/wiki/File:MipMap_Example_STS101_Anisotropic.png
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.